Exploring the Boundaries of Semi-Supervised Facial Expression Recognition: Learning from In-Distribution, Out-of-Distribution, and Unconstrained Data

06/02/2023
by   Shuvendu Roy, et al.
0

Deep learning-based methods have been the key driving force behind much of the recent success of facial expression recognition (FER) systems. However, the need for large amounts of labelled data remains a challenge. Semi-supervised learning offers a way to overcome this limitation, allowing models to learn from a small amount of labelled data along with a large unlabelled dataset. While semi-supervised learning has shown promise in FER, most current methods from general computer vision literature have not been explored in the context of FER. In this work, we present a comprehensive study on 11 of the most recent semi-supervised methods, in the context of FER, namely Pi-model, Pseudo-label, Mean Teacher, VAT, UDA, MixMatch, ReMixMatch, FlexMatch, CoMatch, and CCSSL. Our investigation covers semi-supervised learning from in-distribution, out-of-distribution, unconstrained, and very small unlabelled data. Our evaluation includes five FER datasets plus one large face dataset for unconstrained learning. Our results demonstrate that FixMatch consistently achieves better performance on in-distribution unlabelled data, while ReMixMatch stands out among all methods for out-of-distribution, unconstrained, and scarce unlabelled data scenarios. Another significant observation is that semi-supervised learning produces a reasonable improvement over supervised learning, regardless of whether in-distribution, out-of-distribution, or unconstrained data is utilized as the unlabelled set. We also conduct sensitivity analyses on critical hyper-parameters for the two best methods of each setting.

READ FULL TEXT

page 1

page 3

page 5

page 7

page 12

research
07/31/2022

Analysis of Semi-Supervised Methods for Facial Expression Recognition

Training deep neural networks for image recognition often requires large...
research
06/02/2023

Scaling Up Semi-supervised Learning with Unconstrained Unlabelled Data

We propose UnMixMatch, a semi-supervised learning framework which can le...
research
03/01/2022

Semi-supervised Deep Learning for Image Classification with Distribution Mismatch: A Survey

Deep learning methodologies have been employed in several different fiel...
research
05/28/2022

Boosting Facial Expression Recognition by A Semi-Supervised Progressive Teacher

In this paper, we aim to improve the performance of in-the-wild Facial E...
research
06/14/2020

MixMOOD: A systematic approach to class distribution mismatch in semi-supervised learning using deep dataset dissimilarity measures

In this work, we propose MixMOOD - a systematic approach to mitigate eff...
research
07/06/2020

Learning the Prediction Distribution for Semi-Supervised Learning with Normalising Flows

As data volumes continue to grow, the labelling process increasingly bec...
research
10/27/2017

Image matting with normalized weight and semi-supervised learning

Image matting is an important vision problem. The main stream methods fo...

Please sign up or login with your details

Forgot password? Click here to reset